DocumentCode
2101610
Title
Adaptive Feature Learning for Information Pattern Recognition
Author
Liang, Hong
Author_Institution
IEEE Member
fYear
2007
fDate
4-9 March 2007
Firstpage
23
Lastpage
23
Abstract
Adaptive feature learning is an effective method to explore the mechanism of information pattern recognition in information flow. This paper integrates the progresses of expert learning and artificial intelligence to propose a few new learning algorithms for pattern recognition in information flow. For solving high order matrix computing problem, this paper proposes an orthogonal transformation algorithm. For solving frequency modulation (FM) pattern recognition problem, this paper proposes a differential algorithm. For solving unknown pattern recognition in large scale information flow problem, this paper proposes inverse convolution algorithm and probability spectrum algorithm. These feature learning algorithms can extract and recognize pattern fast, efficiently and explicitly, even patterns are complex, confused and incomplete.
Keywords
learning (artificial intelligence); matrix algebra; pattern recognition; adaptive feature learning; artificial intelligence; expert learning; frequency modulation pattern recognition problem; information flow; information pattern recognition; inverse convolution algorithm; orthogonal transformation algorithm; probability spectrum algorithm; Artificial intelligence; Convolution; Eigenvalues and eigenfunctions; Frequency modulation; IEEE members; Large-scale systems; Learning; Noise reduction; Pattern recognition; Telecommunication computing; Eigen value; Feature Extraction; High Power Matrix Computing; Orthogonal Transformation; inverse convolution; probability spectrum;
fLanguage
English
Publisher
ieee
Conference_Titel
Computing in the Global Information Technology, 2007. ICCGI 2007. International Multi-Conference on
Conference_Location
Guadeloupe City
Print_ISBN
0-7695-2798-1
Type
conf
DOI
10.1109/ICCGI.2007.11
Filename
4137078
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